IEEE J Biomed Health Inform. 2019 Mar;23(2):703-713. doi: 10.1109/JBHI.2018.2832069. Epub 2018 May 1.
Due to the variation in factors surrounding humans, the physiological impact of stress is reported to be different for each individual. Thus, an efficient stress monitoring system needs to assess both the physiological and psychological impact of stress on individual basis and translate these assessments into an accurate quantitative metric that is of value to the individual. Therefore, this study proposed a logistic regression based model that integrates data from psychological Stress Response Inventory, biochemical (salivary cortisol), and physiological (HRV measures) domains via a principle of triangulation for achieving high reliability and consistency during stress assessment. With the proposed model, a mental stress index (MSI) based on the correlation between salivary cortisol and HRV time-/frequency-domain features were established. A total of 30 college students were recruited to verify the feasibility of proposed method by identifying targeted stressful event. The obtained results reveal that MSI values were sensitive to acute stress, and could predict the association level of normal individual to a stress group with approximately 97% accuracy. Findings from this study could provide potential insight on self-tracking and training of individual's stress with adoption of wearable sensor system in a dynamic setting.
由于人类周围因素的变化,压力对每个人的生理影响据报道是不同的。因此,一个有效的压力监测系统需要根据个人的生理和心理压力影响进行评估,并将这些评估转化为对个人有价值的准确的定量指标。因此,本研究提出了一种基于逻辑回归的模型,该模型通过三角测量原理整合了来自心理应激反应量表、生化(唾液皮质醇)和生理(HRV 测量)领域的数据,在进行压力评估时实现了高可靠性和一致性。在所提出的模型中,建立了基于唾液皮质醇和 HRV 时/频域特征之间相关性的心理应激指数(MSI)。总共招募了 30 名大学生,通过识别有针对性的应激事件来验证所提出方法的可行性。研究结果表明,MSI 值对急性应激敏感,并能够以大约 97%的准确率预测正常个体与应激组的关联水平。本研究的结果可以为采用可穿戴传感器系统在动态环境中进行个体的自我跟踪和压力训练提供潜在的见解。